I have an artificial neural network which plays Tic-Tac-Toe - but it is not complete yet.

**What I have yet:**

- the reward array "R[t]" with integer values for every timestep or move "t" (1=player A wins, 0=draw, -1=player B wins)
- The input values are correctly propagated through the network.
- the formula for adjusting the weights:

**What is missing:**

- the TD learning: I still need a procedure which "backpropagates" the network's errors using the TD(λ) algorithm.

But I don't really understand this algorithm.

**My approach so far ...**

The trace decay parameter λ should be "0.1" as distal states should not get that much of the reward.

The learning rate is "0.5" in both layers (input and hidden).

It's a case of delayed reward: The reward remains "0" until the game ends. Then the reward becomes "1" for the first player's win, "-1" for the second player's win or "0" in case of a draw.

**My questions:**

- How and when do you calculate the net's error (TD error)?
- How can you implement the "backpropagation" of the error?
- How are the weights adjusted using TD(λ)?

Thank you so much in advance :)